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Unsupervised Pattern Classifier For Abnormality Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis by Vinay B. Jammu

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1Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis

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A new unsupervised pattern classifier is introduced for on-line detection of abnormality in features of vibration that are used for fault diagnosis of helicopter gearboxes. This classifier compares vibration features with their respective normal values and assigns them a value in (0, 1) to reflect their degree of abnormality. Therefore, the salient feature of this classifier is that it does not require feature values associated with faulty cases to identify abnormality. In order to cope with noise and changes in the operating conditions, an adaptation algorithm is incorporated that continually updates the normal values of the features. The proposed classifier is tested using experimental vibration features obtained from an OH-58A main rotor gearbox. The overall performance of this classifier is then evaluated by integrating the abnormality-scaled features for detection of faults. The fault detection results indicate that the performance of this classifier is comparable to the leading unsupervised neural networks: Kohonen's Feature Mapping and Adaptive Resonance Theory (AR72). This is significant considering that the independence of this classifier from fault-related features makes it uniquely suited to abnormality-scaling of vibration features for fault diagnosis.

“Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis” Metadata:

  • Title: ➤  Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis
  • Authors:
  • Language: English

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The book is available for download in "texts" format, the size of the file-s is: 5.53 Mbs, the file-s for this book were downloaded 361 times, the file-s went public at Mon May 23 2011.

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2NASA Technical Reports Server (NTRS) 19970028574: Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis

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A new unsupervised pattern classifier is introduced for on-line detection of abnormality in features of vibration that are used for fault diagnosis of helicopter gearboxes. This classifier compares vibration features with their respective normal values and assigns them a value in (0, 1) to reflect their degree of abnormality. Therefore, the salient feature of this classifier is that it does not require feature values associated with faulty cases to identify abnormality. In order to cope with noise and changes in the operating conditions, an adaptation algorithm is incorporated that continually updates the normal values of the features. The proposed classifier is tested using experimental vibration features obtained from an OH-58A main rotor gearbox. The overall performance of this classifier is then evaluated by integrating the abnormality-scaled features for detection of faults. The fault detection results indicate that the performance of this classifier is comparable to the leading unsupervised neural networks: Kohonen's Feature Mapping and Adaptive Resonance Theory (AR72). This is significant considering that the independence of this classifier from fault-related features makes it uniquely suited to abnormality-scaling of vibration features for fault diagnosis.

“NASA Technical Reports Server (NTRS) 19970028574: Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis” Metadata:

  • Title: ➤  NASA Technical Reports Server (NTRS) 19970028574: Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis
  • Author: ➤  
  • Language: English

“NASA Technical Reports Server (NTRS) 19970028574: Unsupervised Pattern Classifier For Abnormality-Scaling Of Vibration Features For Helicopter Gearbox Fault Diagnosis” Subjects and Themes:

Edition Identifiers:

Downloads Information:

The book is available for download in "texts" format, the size of the file-s is: 16.69 Mbs, the file-s for this book were downloaded 98 times, the file-s went public at Thu Oct 13 2016.

Available formats:
Abbyy GZ - Animated GIF - Archive BitTorrent - DjVuTXT - Djvu XML - Item Tile - Metadata - Scandata - Single Page Processed JP2 ZIP - Text PDF -

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